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Article

Application of M-SWARA and TOPSIS Methods in the Evaluation of Investment Alternatives of Microgeneration Energy Technologies

1
The School of Business, İstanbul Medipol University, 34810 Istanbul, Turkey
2
The School of Business, Ibn Haldun University, 34480 Basaksehir, Turkey
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(10), 6271; https://doi.org/10.3390/su14106271
Submission received: 14 April 2022 / Revised: 13 May 2022 / Accepted: 18 May 2022 / Published: 21 May 2022

Abstract

:
Investments in microgeneration technologies help to boost the usage of clean energy while reducing pollution. However, selecting the appropriate investment remains the most critical phase in developing these technologies. This study aims to design a multi-criteria decision-making method (MCDM) to evaluate investment alternatives for microgeneration energy technologies. The proposed MCDM is based on a Multi Stepwise Weight Assessment Ratio Analysis (M-SWARA), to define the relative importance of the factors. The Technique for Order Preference by Similarity to Ideal Solution (TOPSIS) and q-Rung Orthopair Fuzzy Soft Sets (q-ROFSs) are used to rank investment alternatives. Calculations were also made with Intuitionistic Fuzzy Sets (IFSs) and Pythagorean Fuzzy Sets (PFSs). For analysis, five evaluation criteria were selected based on the literature: frequency of maintenance, ease of installation, environmental adaptation, transmission technologies, and efficiency of cost. Similarly, six alternatives for microgeneration technology investments were selected: ground source heat pumps, micro hydroelectric power, micro combined heat and power, micro bioelectrochemical fuel cell systems, small-scale wind turbines, and photovoltaic systems. The results showed that cost efficiency was the most significant factor in the effectiveness of microgeneration energy investments, and the photovoltaic system was the best alternative to increase microgeneration energy technology investment performance. Furthermore, the results were the same for the analyses made with IFSs and PFSs, demonstrating the reliability of the proposed method. Therefore, investors in microgeneration technologies should prioritize photovoltaic systems. This conclusion is supported by the fact that photovoltaic is a renewable energy source that has witnessed the most technological improvements and cost reductions over the last decade.

1. Introduction

1.1. Background Information

Microgeneration is a form of energy generation that aims to meet the energy needs of individuals and small-scale companies. If these segments are too far from the grid, energy costs increase significantly. In microgeneration systems, there is proximity to the end consumer. This situation, which increases energy efficiency, is considered the most important advantage of microgeneration systems. In addition, microgeneration systems cover both heat and electrical energy production [1]. This issue also contributes to a more efficient energy production process. Moreover, microgeneration energy systems also help to increase the use of clean energy [2,3]. This issue allows a reduction in the carbon emission problem that threatens the environment significantly. Therefore, for microgeneration energy technology investments to be sustainable, their performance should be increased.
In this context, it is important to determine the main factors affecting the performance of these investments with a detailed analysis. Ease of installation is a significant factor for performance measurement. Efficiency in the process is decreased and extra costs are created when installation is not easy. Environmental compliance is another factor because each energy alternative may not be suitable for all geographies. The frequency of maintenance also plays a key role in the performance measurement of microgeneration energy investments since it creates extra costs for the investors [3]. Cost effectiveness is also an important variable in the performance of these investments. In this context, owing to technological developments, costs of these projects can be managed more effectively.
The renewable energy alternatives preferred in microgeneration systems are also important in the performance analysis of these investments. Small-scale wind turbines can be preferred in this regard. Because they are smaller than typical wind turbines, they can be used on the roofs of buildings. This alternative is appropriate for regions that can obtain high amounts of wind. Similarly, in photovoltaic systems, small-scale solar panels can be built on roofs. However, energy generation from both small-scale wind turbines and solar panels is affected by climate conditions [4]. Micro hydroelectric power is another alternative for this situation; however, there should be flowing water near the building. In summary, all renewable energy alternatives have both benefits and drawbacks. Thus, for the high performance of microgeneration projects, it is necessary to choose the most accurate renewable energy alternative with a comprehensive analysis.

1.2. Literature Evaluation

Researchers regard the subject of performance measurement factors in microgeneration technology investment performance as important. In this framework, cost efficiency is stated as an important indicator. For the sustainability of these projects, profitability conditions should be provided [4]. Otherwise, despite the positive impacts on the environment, the investors will prefer not to focus on these projects [5]. For this purpose, technological developments can contribute to cost reduction so that investors follow the recent trends in microgeneration energy technologies [6]. Pearce and Slade [7] focused on the effectiveness of microgeneration energy technology investments. They discussed that cost effectiveness is a key issue to increase the performance of these projects. For this situation, they identified that tax advantages should be provided for the investors to overcome this problem. Gabderakhmanova and Popel [8] evaluated photovoltaic microgeneration systems in the Russian federation. They made a detailed competitive analysis and concluded that cost-efficiency should be provided to increase these projects. Saleme et al. [9] examined the Brazilian energy market. They claimed that for the improvement of photovoltaic microgeneration, costs should be minimized.
The installation of microgeneration energy systems should be very easy. Microgeneration energy projects can be established with different types of energy. However, not every type of energy is easy to install. Small-scale solar panels and wind turbines can be built on the roofs of buildings. This ease of installation means microgeneration technology investment systems can be improved [10]. However, for the establishment of micro hydropower, there should be flowing water near the property. Additionally, micro hydropower systems need a turbine and a pump [11]. These difficulties create some barriers for the development of these systems. Karytsas [12] examined the motivational factors behind microgeneration systems in Greece. They identified that energy systems should be easy to install. Bao et al. [13] focused on the key factors in micro solar systems. They claimed that a difficult installation process leads to some barriers regarding the improvement of these systems.
The frequency of maintenance is another significant issue that affects the performance of microgeneration investments. With respect to the sustainability of these projects, they should be profitable [14]. In this context, the costs of these investments should be minimized. However, frequent maintenance leads to increased costs [15]. Therefore, because of this problem, investors will panic, and this will hinder the development of microgeneration projects. Hence, to increase the performance of microgeneration energy technology projects, an energy alternative with a low-maintenance frequency can be selected. Virupaksha et al. [6] examined solar photovoltaic-based microgeneration systems in Ireland. They discussed that frequency of maintenance has a negative influence on the effectiveness of these systems. Su et al. [11] evaluated renewable microgeneration technologies in Lithuania. They reached the conclusion that maintenance costs should be taken into consideration in these systems.
Technological development also plays an essential role with respect to the performance improvement of microgeneration energy investments. Microgeneration systems consider renewable energy types that contain complex processes [16]. As a result of this issue, investors should have the necessary technological developments. Some recent developments in energy technologies can decrease costs [17]. This situation provides important advantages for the efficiency of these projects. Aquila et al. [18] analyzed small-scale solar microgeneration systems in Brazil. They claimed that investors should have sufficient technological improvements. Piterou and Coles [19] evaluated decentralized renewable energy projects. They identified that technological development is a crucial performance measurement indicator in microgeneration energy investments. Zhang et al. [20] assessed renewable microgeneration technologies and reached similar findings.

1.3. The Purpose and Novelty of This Study

Literature evaluations demonstrate that different issues have a significant influence on the performance of microgeneration technology investments. However, for the effectiveness of these projects, more important determinants should be identified. For this purpose, a new study is needed that makes a prioritization analysis regarding performance measurement indicators. Key performance indicators and appropriate renewable energy alternatives are evaluated in this manuscript which considers the effectiveness of microgeneration energy technology investments.
Key performance indicators and appropriate renewable energy alternatives are examined in microgeneration energy technology investments. In this scope, a model is generated that consists of two stages. Firstly, selected criteria are weighted using a SWARA. Additionally, technology investment alternatives are ranked using TOPSIS. In this process, q-ROFSs and the golden cut are taken to consideration. Additionally, comparative evaluations are performed with IFSs and PFSs to check the validity of the findings. Analysis results provide critical information for microgeneration technology investors. Hence, the efficiency of these projects can be increased so that carbon emission problems can be reduced with the help of clean energy consumption.
The proposed model has some advantages when compared with similar models in the literature. There are limited studies in which the degrees in the analysis process are calculated by considering the golden cut. Similarly, SWARA is extended, in this study, to M-SWARA to reach more precise findings. These issues contribute to the methodological originality of this study. Moreover, the SWARA method is used for weighting items to increase objectivity. Additionally, because q-ROFSs are the extension of both IFSs and PFSs, they become helpful to minimize uncertainty in this respect [21,22,23]. The TOPSIS method also has some benefits over similar techniques. For instance, in some models, only the positive ideal solution is considered [24,25]. However, the TOPSIS method also uses negative ideal solutions, contributing to more accurate results [26].
Section 2 includes a literature review. Section 3 explains the methodology. Section 4 includes analysis results. Section 5 gives information about discussions and conclusions.

2. Materials and Methods

Microgeneration energy systems contribute to the use of clean energy so that carbon emission problems can be minimized. Within this framework, a detailed evaluation should be carried out to understand key performance indicators of these systems. This situation helps to achieve sustainability of these investments. However, all renewable energy alternatives have both benefits and drawbacks. Thus, for the high performance of microgeneration projects, it is necessary to choose the most accurate renewable energy alternative with a comprehensive analysis. Therefore, there is a need for a new study which makes a prioritization analysis regarding performance measurement indicators. In this study, a hybrid fuzzy decision-making model is created to solve these problems. This part explains q-ROFs, M-SWARA, and TOPSIS, with the golden cut.

2.1. q-ROFs with the Golden Cut

Atanassov [27] generated IFSs by using both membership ( μ I ( ϑ ) ) and non-membership ( n I ( ϑ ) ) degrees. In this context, it aims to provide precise solutions. These sets are demonstrated in Equation (1). The required condition of these sets is stated as 0 μ I ( ϑ ) + n I ( ϑ ) 1 .
I = { ϑ , μ I ( ϑ ) , n I ( ϑ ) ϑ ϵ U }
PFSs is created as a generalization of IFSs with new degrees ( μ P and n P ) [28]. Equation (2) represents these sets.
P = { ϑ , μ P ( ϑ ) , n P ( ϑ ) ϑ ϵ U }
In this process, the condition in Equation (3) must be fulfilled.
0 ( μ P ( ϑ ) ) 2 + ( n P ( ϑ ) ) 2 1
q-ROFSs are created by the extension of IFSs to manage uncertainty more appropriately by using new grades ( μ Q , n Q ). Equation (4) gives information about these sets [29].
Q = { ϑ , μ Q ( ϑ ) , n Q ( ϑ ) ϑ ϵ U }
Equation (5) includes the required condition.
0 ( μ Q ( ϑ ) ) q + ( n Q ( ϑ ) ) q 1 ,   q 1
Equation (6) includes indeterminacy degree.
π Q ( ϑ ) = ( ( μ Q ( ϑ ) ) q + ( n Q ( ϑ ) ) q ( μ Q ( ϑ ) ) q ( n Q ( ϑ ) ) q ) 1 q
Computational details are shown in Equations (7)–(10).
Q 1 = { ϑ , Q 1 ( μ Q 1 ( ϑ ) , n Q 1 ( ϑ ) ) ϑ ϵ U }   and   Q 2 = { ϑ , Q 2 ( μ Q 2 ( ϑ ) , n Q 2 ( ϑ ) ) ϑ ϵ U }
Q 1 Q 2 = ( ( μ Q 1 q + μ Q 2 q μ Q 1 q μ Q 2 q ) 1 q ,   n Q 1 n Q 2 )  
Q 1 Q 2 = ( μ Q 1 μ Q 2 ,   ( n Q 1 q + n Q 2 q n Q 1 q n Q 2 q ) 1 q )  
λ Q = ( ( 1 ( 1 μ Q q   ) λ ) 1 q ,     ( n Q ) λ ) ,   λ > 0  
Q λ = (   ( μ Q ) λ ,   ( 1 ( 1 n Q q   ) λ   ) 1 q ) , λ > 0  
Defuzzification is performed with Equation (11).
S ( ϑ ) = ( μ Q ( ϑ ) ) q ( n Q ( ϑ ) ) q
In this study, the degrees are defined with the golden cut to make more effective examinations [30]. Equation (12) indicates the details where a > b > 0 and φ represents the golden cut. Additionally, a and b demonstrate large and small quantities.
Φ = a / b
Equation (13) states the algebraic form:
Φ = ( 1 + 5 ) / 2 = 1.618
The degrees obtained from the golden cut ( μ G and n G ) are given in Equation (14).
Φ = μ G n G
Additionally, q-ROFSs are defined with the degrees obtained by the golden cut as in Equations (15) and (16).
Q G = { ϑ , μ Q G ( ϑ ) , n Q G ( ϑ ) ϑ ϵ U }
0 ( μ Q G ( ϑ ) ) q + ( n Q G ( ϑ ) ) q 1 , q 1

2.2. M-SWARA with q-ROFSs

Keršuliene et al. [31] generated a SWARA for finding the weights of the items by considering hierarchical priorities of the experts. SWARA is extended in this study by the name of multi-SWARA (M-SWARA) to obtain better results. In this process, evaluations are taken from the experts so that a decision matrix is created as in Equation (17).
Q k = [ 0 Q 12 Q 1 n Q 21 0 Q 2 n Q n 1 Q n 2 0 ]
Next, q-ROFSs and score functions are defined with Equations (5) and (11). Later, s j , k j , q j , and w j values are computed by Equations (18)–(20).
k j = { 1   j = 1 s j + 1   j > 1
q j = { 1   j = 1 q j 1 k j   j > 1
If   s j 1 = s j ,   q j 1 = q j ; If   s j = 0 ,   k j 1 = k j  
w j = q j k = 1 n q k  
Comparative importance rate is shown as sj whereas the coefficient value is stated as k j . Additionally, recalculated weight is given as q j while w j indicates the criteria weights under the q-ROFNs. Additionally, stable values are identified by transposing and limiting the matrix to the power of 2t + 1.

2.3. TOPSIS with q-ROFSs

The TOPSIS ranks alternatives by importance. In this study, this technique is extended with q-ROFSs. After providing the evaluations, a decision matrix is constructed as in Equation (21) [26].
X k = [ 0 X 12 X 1 m X 21 0 X 2 m X n 1 X n 2 0 ]
Next, Equation (22) is used to normalize this matrix.
r ij = X ij i = 1 m X ij 2 .  
Weighted values are computed as in Equation (23).
v ij = w ij × r ij
Equations (24) and (25) include the computation of the positive ( A + ) and negative ( A ) solutions.
A + = { v 1 j , v 2 j , , v mj } = { max v 1 j   for     j n }
  A = { v 1 j , v 2 j , , v mj } = { min v 1 j   for     j n }
Distances to the best ( D i + ) and worst ( D i ) alternatives are identified by Equations (26) and (27).
D i + = j = 1 n ( v ij A j + ) 2
D i = j = 1 n ( v ij A j ) 2
Relative closeness ( RC i ) is defined with Equation (28).
RC i = D i D i + + D i

3. Analysis

In this study, a model is constructed to understand critical performance measurement factors in microgeneration energy technology investments. The relative importance of the factors is defined with an M-SWARA, and investment alternatives are evaluated using the TOPSIS method, while considering q-ROFSs and the golden cut. All details of this model are presented in Figure 1.

3.1. Finding Relative Importance of the Factors

Based on the evaluation of the literature, a criteria list was created as in Table 1 regarding the performance measurement of microgeneration.
Cost effectiveness is an important variable in the performance of microgeneration energy technology investments. Technological developments are expected to reduce costs. If the technological investments to be made do not contribute positively to the reduction in costs, the efficiency of microgeneration energy investments will decrease. In this process, the ease of installation of projects is another important factor for performance measurement. Alternatives that are not easy to install will both reduce the efficiency in the process and create extra costs. Environmental compliance is another factor that can be effective in this context. All energy alternatives may not be suitable for all geographies. Therefore, it would be appropriate to choose the energy alternative that is suitable for the climatic conditions of the region where microgeneration projects will be established. Microgeneration energy investments are projects with comprehensive processes. In this context, the subject of transmission technologies is very important. On the other hand, frequent maintenance leads to increased costs. Table 2 states the degrees and scales used in the analysis process.
In this process, an expert team is generated that consists of three people with significant experience in microgeneration technology investments. Their evaluations are shown in Table 3.
Average values are computed as in Table 4.
Table 5 includes score function values.
The sj, kj, qj, and wj values are calculated in Table 6.
Table 7 includes the relation matrix.
Table 8 gives information about the stable matrix.
Figure 2 represents the impact-relation map.
It is identified that environmental adaptation (criterion 3) and efficiency of cost (criterion 5) are the most influenced items. Additionally, the most influential criterion is transmission technologies (criterion 4). Weighting priorities are shown in Table 9.
The results are the same for the analyses made by IFSs, PFSs, and q-ROFSs. Efficiency of cost (criterion 5) is the most significant factor for the effectiveness of microgeneration energy technology investments. Environmental adaptation (criterion 3) has the second highest weight. Frequency of maintenance (criterion 1) is the least important item.

3.2. Ranking the Alternatives for Microgeneration Technology Investments

Based on the literature examination, six different microgeneration technology investment alternatives are selected as in Table 10.
An expert team also evaluated these alternatives as in Table 11.
Average values are given in Table 12.
Score function values are computed as in Table 13.
Decision matrix is normalized as in Table 14.
Table 15 shows the weighted matrix.
Significant values for ranking the items are computed as in Table 16.
Ranking summaries are shown in Table 17.
It is determined that a photovoltaic system (alternative 6) is the most critical alternative to increase the performance of microgeneration energy technology investment. Additionally, small-scale wind turbines (alternative 5) can also be considered in this framework.

4. Discussions

The most important advantage of microgeneration technology investments is that they contribute to the increase in clean energy use. Different types of renewable energy are considered in these projects. On the other hand, it is very important that the costs are reasonable to ensure the continuity of these investments. When cost efficiency cannot be achieved, investors will not prefer these projects, even though there are many benefits to the environment. Furthermore, it would be appropriate for investors to prioritize photovoltaic systems. Thanks to technological developments, there are serious decreases in the costs of these projects. Therefore, photovoltaic systems, which have a cost advantage, should be preferred in projects to develop microgeneration technology investments.
In the literature, there are different views regarding this issue. For instance, Schulte et al. [43], Judson and Zirakbash [3], and Du et al. [37] identified that small-scale solar microgeneration systems should be considered for the effectiveness of these projects. Furthermore, researchers underlined the importance of other renewable energy alternatives for microgeneration projects, such as small-scale wind turbines [44] and micro hydroelectric powers [45]. Similarly, Dong et al. [46] and Yüksel and Ubay [47] also highlighted the significance of wind energy systems, with the aim of increasing the efficiency of renewable energy investments.

5. Conclusions

In this study, a model was created to identify critical performance measurement factors in microgeneration energy technology investments. Relative importance of the factors was determined with an M-SWARA, and investment alternatives were examined using the TOPSIS method, considering q-ROFSs and the golden cut. It is concluded that environmental adaptation and efficiency of cost are the most influential items. Additionally, the most influential criterion is transmission technologies. Efficiency of cost is the most significant factor for the effectiveness of microgeneration energy technology investments. Environmental adaptation has the second highest weight. Frequency of maintenance is the least important item. It is determined that a photovoltaic system is the most critical alternative to increase the performance of microgeneration energy technology investment. Additionally, small-scale wind turbines can also be considered in this framework. The results are the same for the analyses made by IFSs, PFSs, and q-ROFSs, which demonstrates the reliability of findings.
Focusing on microgeneration projects in a general manner is an important limitation of this study. Specific evaluations can be considered in future studies, such as performance measurements of small-scale wind turbines, micro hydroelectric power, or photovoltaic systems. With the help of this issue, unique strategies can be presented for each type of energy alternative. Additionally, different methodologies can be used in the following research. This situation helps to make a comparative examination. Furthermore, in this study only the analysis results of the proposed model are presented. However, the findings cannot be compared with real data. Therefore, in future studies, a case study can be conducted in which the findings can be compared with data from real microgeneration energy technology investments, located in different geographical locations.

Author Contributions

Conceptualization, H.D. and S.Y.; methodology, H.D. and S.Y.; software, H.D. and S.Y.; validation, H.D., S.Y.,T.A. and Ü.H.; formal analysis, H.D., S.Y.,T.A. and Ü.H.; investigation, T.A. and Ü.H; resources, H.D., S.Y.,T.A. and Ü.H.; data curation, H.D., S.Y.,T.A. and Ü.H.; writing—original draft preparation, H.D. and S.Y.; writing—review and editing, T.A, and Ü.H.; visualization, T.A. and Ü.H.; supervision, T.A. and Ü.H.; project administration, H.D.; funding acquisition, T.A. and Ü.H. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Algorithm of proposed decision-making model.
Figure 1. Algorithm of proposed decision-making model.
Sustainability 14 06271 g001
Figure 2. Impact-relation map.
Figure 2. Impact-relation map.
Sustainability 14 06271 g002
Table 1. Criteria List.
Table 1. Criteria List.
CriteriaReferences
Frequency of maintenance (Criterion 1)[32]
Ease of installation (Criterion 2)[33]
Environmental adaptation (Criterion 3)[34]
Transmission technologies (Criterion 4)[35]
Efficiency of cost (Criterion 5)[36]
Table 2. Scales and degrees.
Table 2. Scales and degrees.
Scales for FactorsScales for AlternativesMembership DegreesNon-Membership Degrees
No (n)Weakest (w)0.400.25
Some (s)Poor (p)0.450.28
Medium (m)Fair (f)0.500.31
High (h)Good (g)0.550.34
Very High (vh)Best (b)0.600.37
Table 3. Evaluations.
Table 3. Evaluations.
Decision Maker 1
C1C2C3C4C5
C1 NVHVHM
C2VH MMVH
C3NVH NM
C4MVHVH VH
C5VHMVHVH
Decision Maker 2
C1C2C3C4C5
C1 SVHVHS
C2M MSVH
C3NVH NM
C4SVHVH VH
C5HMVHH
Decision Maker 3
C1C2C3C4C5
C1 SNVHS
C2M MSVH
C3SS NM
C4VHVHVH VH
C5HMVHH
C: Criterion
Table 4. Average values.
Table 4. Average values.
C1C2C3C4C5
μvμvμvμvμv
C1 0.430.270.530.330.600.370.470.29
C20.530.33 0.500.310.470.290.600.37
C30.420.260.550.34 0.400.250.500.31
C40.520.320.600.370.600.37 0.600.37
C50.570.350.500.310.600.370.570.35
C: Criterion
Table 5. Score function values.
Table 5. Score function values.
C1C2C3C4C5
C10.0000.0620.1160.1650.078
C20.1160.0000.0950.0780.165
C30.0550.1270.0000.0490.095
C40.1050.1650.1650.0000.165
C50.1390.0950.1650.1390.000
C: Criterion
Table 6. Sj, kj, qj, and wj values.
Table 6. Sj, kj, qj, and wj values.
C1SjkjqjwjC2Sjkjqjwj
C40.1651.0001.0000.285C50.1651.0001.0000.288
C30.1161.1160.8960.255C10.1161.1160.8960.258
C50.0781.0780.8320.237C30.0951.0950.8180.236
C20.0621.0620.7830.223C40.0781.0780.7590.219
C3SjkjqjwjC4Sjkjqjwj
C20.1271.0001.0000.278C20.1651.0001.0000.256
C50.0951.0950.9130.253C30.1651.1651.0000.256
C10.0551.0550.8650.240C50.1651.1651.0000.256
C40.0491.0490.8250.229C10.1051.1050.9050.232
C5Sjkjqjwj
C30.1651.0001.0000.281
C10.1391.1390.8780.247
C40.1391.1390.8780.247
C20.0951.0950.8010.225
C: Criterion
Table 7. Relation matrix.
Table 7. Relation matrix.
C1C2C3C4C5
C1 0.2230.2550.2850.237
C20.258 0.2360.2190.288
C30.2400.278 0.2290.253
C40.2320.2560.256 0.256
C50.2470.2250.2810.247
C: Criterion
Table 8. Stable matrix.
Table 8. Stable matrix.
C1C2C3C4C5
C10.1950.1950.1950.1950.195
C20.1970.1970.1970.1970.197
C30.2040.2040.2040.2040.204
C40.1960.1960.1960.1960.196
C50.2050.2050.2050.2050.205
C: Criterion
Table 9. Weights.
Table 9. Weights.
IFSsPFSsq-ROFSs
C1555
C2333
C3222
C4444
C5111
C: Criterion
Table 10. Selected alternatives of microgeneration technology investments.
Table 10. Selected alternatives of microgeneration technology investments.
AlternativesReferences
Ground source heat pumps (Alternative 1)[37]
Micro hydroelectric power (Alternative 2)[38]
Micro combined heat and power (Alternative 3)[39]
Micro bioelectrochemical fuel cell systems (Alternative 4)[40]
Small-scale wind turbines (Alternative 5)[41]
Photovoltaic systems (Alternative 6)[42]
Table 11. Evaluations for the alternatives.
Table 11. Evaluations for the alternatives.
Decision Maker 1
C1C2C3C4C5
A1FBWPG
A2WPFWP
A3PFWPB
A4WPPWP
A5PFFBF
A6BFFBB
Decision Maker 2
C1C2C3C4C5
A1PGWPG
A2WPFWP
A3PPGPB
A4WPPPG
A5PFFBF
A6BFFBB
Decision Maker 3
C1C2C3C4C5
A1PBFPG
A2BFFWP
A3PPBFB
A4BFBFG
A5PFFBF
A6BFFBB
A: Alternative
Table 12. Average values for the alternatives.
Table 12. Average values for the alternatives.
C1C2C3C4C5
μvμvμvμvμv
A10.470.290.580.360.430.270.450.280.550.34
A20.470.290.470.290.500.310.400.250.450.28
A30.450.280.470.290.520.320.470.290.600.37
A40.470.290.470.290.500.310.450.280.520.32
A50.450.280.500.310.500.310.600.370.500.31
A60.600.370.500.310.500.310.600.370.600.37
A: Alternative
Table 13. Score function values for the alternatives.
Table 13. Score function values for the alternatives.
C1C2C3C4C5
A10.0780.1520.0620.0700.127
A20.0780.0780.0950.0490.070
A30.0700.0780.1050.0780.165
A40.0780.0780.0950.0700.105
A50.0700.0950.0950.1650.095
A60.1650.0950.0950.1650.165
A: Alternative
Table 14. Normalized matrix.
Table 14. Normalized matrix.
C1C2C3C4C5
A10.3310.6230.2740.2580.411
A20.3310.3190.4210.1820.225
A30.2970.3190.4650.2880.533
A40.3310.3190.4210.2580.341
A50.2970.3920.4210.6130.309
A60.7040.3920.4210.6130.533
A: Alternative
Table 15. Weighted matrix.
Table 15. Weighted matrix.
C1C2C3C4C5
A10.0650.1230.0560.0510.084
A20.0650.0630.0860.0360.046
A30.0580.0630.0950.0570.110
A40.0650.0630.0860.0510.070
A50.0580.0770.0860.1200.063
A60.1380.0770.0860.1200.110
A: Alternative
Table 16. The values of D+, D-, and RCi.
Table 16. The values of D+, D-, and RCi.
AlternativesD+D-RCi
A10.1110.0730.396
A20.1420.0310.178
A30.1180.0770.395
A40.1240.0420.251
A50.1030.0930.473
A60.0460.1370.747
A: Alternative
Table 17. Ranking results.
Table 17. Ranking results.
Alternativesq-ROF Multi SWARA-TOPSISPF Multi SWARA-TOPSISIF Multi SWARA-TOPSIS
A1344
A2666
A3433
A4555
A5222
A6111
A: Alternative
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Dinçer, H.; Yüksel, S.; Aksoy, T.; Hacıoğlu, Ü. Application of M-SWARA and TOPSIS Methods in the Evaluation of Investment Alternatives of Microgeneration Energy Technologies. Sustainability 2022, 14, 6271. https://doi.org/10.3390/su14106271

AMA Style

Dinçer H, Yüksel S, Aksoy T, Hacıoğlu Ü. Application of M-SWARA and TOPSIS Methods in the Evaluation of Investment Alternatives of Microgeneration Energy Technologies. Sustainability. 2022; 14(10):6271. https://doi.org/10.3390/su14106271

Chicago/Turabian Style

Dinçer, Hasan, Serhat Yüksel, Tamer Aksoy, and Ümit Hacıoğlu. 2022. "Application of M-SWARA and TOPSIS Methods in the Evaluation of Investment Alternatives of Microgeneration Energy Technologies" Sustainability 14, no. 10: 6271. https://doi.org/10.3390/su14106271

APA Style

Dinçer, H., Yüksel, S., Aksoy, T., & Hacıoğlu, Ü. (2022). Application of M-SWARA and TOPSIS Methods in the Evaluation of Investment Alternatives of Microgeneration Energy Technologies. Sustainability, 14(10), 6271. https://doi.org/10.3390/su14106271

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